Class Size and Sorting in Market Equilibrium: Theory and ... · Class Size and Sorting in Market...
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Class Size and Sorting in Market Equilibrium:
Theory and Evidence
Miguel Urquiola†
Eric Verhoogen‡
Sept. 2006
Abstract
This paper examines how schools choose class size and how households sort in response to thosechoices. Focusing on the highly liberalized Chilean education market, we develop a model in whichschools are heterogeneous in an underlying productivity parameter, class size is a component ofschool quality, a class-size cap applies to some schools, and households are heterogeneous inincome and hence willingness to pay for quality. The model offers an explanation for two distinctempirical patterns: (i) There is an inverted-U relation between class size and household incomein equilibrium, which will tend to bias cross-sectional estimates of the effect of class size onstudent performance. (ii) Some schools at the class size cap adjust prices and/or enrollmentsto avoid adding another classroom, which produces stacking at enrollments that are multiplesof the class size cap. This results in discontinuities in the relationship between enrollment andstudents’ income at those points, violating the assumptions underlying regression-discontinuity(RD) research designs. An implication is that RD approaches should not be applied in settings inwhich parents have substantial school choice and schools are free to set prices and influence theirenrollments.
——————————For useful comments we thank Josh Angrist, Jere Behrman, David Card, Pierre-Andre Chiappori, Gregory Elacqua,Helios Herrera, Kate Ho, Larry Katz, Patrick McEwan, Bernard Salanie and seminar participants at Berkeley,Bocconi, Columbia, Florida, LSE/UCL, Maryland, and Iowa. †Columbia University, email: [email protected]‡Columbia University, BREAD, CEPR, and IZA, email: [email protected].
1 Introduction
There has been a long and heated debate on whether class-size reductions improve educational
performance. Hanushek (1995, 2003) reviews an extensive literature and concludes that class
size has no systematic effect on student achievement in either developed or developing countries.
Krueger (2003), Kremer (1995) and others have countered that this conclusion is based largely
on cross-sectional evidence and subject to multiple potential sources of bias, including the en-
dogenous sorting of students into classes of different sizes, and have called for further analyses
using experimental and quasi-experimental designs. In the latter category, an influential approach
has been the regression-discontinuity (RD) design of Angrist and Lavy (1999), which exploits the
discontinuous relationship between enrollment and class size that results from class-size caps.1
Despite a general awareness of the possible endogeneity of class size, relatively little attention
has been paid to how schools choose class size or to how households sort in response to those
choices. In this paper, we develop a model of class-size choices by heterogeneous schools and of
school choices by heterogeneous households, show that its central predictions are borne out in
data on Chilean schools, and argue that these findings have important implications for attempts
to estimate the effect of class size on student outcomes. Chile’s educational market is well-suited
to such an investigation in part because private schools account for approximately half of the
market, and a majority of them are operated on a for-profit basis. This makes it straightforward
to specify schools’ objective functions—an otherwise difficult task in many public-sector contexts.
In the model, schools are assumed to be monopolistically competitive, to be heterogeneous in
an underlying productivity parameter, and to offer quality-differentiated “products,” where class
size is a component of school quality. Households are assumed to be heterogeneous in income and
hence in willingness to pay for quality. Schools face three constraints which correspond to real
restrictions faced by Chilean schools: (1) a class size cap at 45 students, which applies to private
schools accepting government subsidies; (2) an integer constraint on the number of classrooms,
which applies to all schools; and (3) the restriction that enrollment (a choice variable of schools)
cannot exceed demand, which also applies to all schools.1The RD approach has also been used to study the effects of class size by Browning and Heinesen (2003) in
Denmark, Dobbelsteen, Levin, and Oosterbeek (2002) in Holland, Hoxby (2000) in the U.S., McEwan and Urquiola(2005) in Chile, and Urquiola (2006) in Bolivia. For a formal treatment of identification issues in the RD context,see Hahn, Todd, and der Klaauw (2001).
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The model delivers two main empirical predictions, both of which find support in the data.
First, there is an inverted-U relation between class size and household income in cross-section.
The model predicts that higher-income households sort into higher-productivity, higher-quality
schools, as one might expect. The inverted U arises from the interaction of two effects: higher
productivity both enables schools to better fill their existing classrooms and leads schools to add
classrooms and reduce class size to appeal to higher income households. The former tends to
dominate at lower levels of productivity, and the latter at higher levels. The inverted-U relation
between class size and income will tend to confound attempts to estimate the effect of class size
on student outcomes in cross-sectional regressions.
Second, in the presence of the class-size cap and the integer constraint on the number of
classrooms, schools at the cap adjust price and/or enrollment to avoid having to add an addi-
tional classroom. This results in stacking at enrollment levels that are multiples of 45. Because
higher-income households sort into higher-productivity schools, the stacking implies discontinu-
ous changes in average family income and hence in other correlates of income, such as mothers’
schooling, at these multiples. The resulting discontinuities violate the assumptions underlying the
RD designs that have been used to estimate the effect of class size. Our results thus provide a
concrete illustration of how endogenous sorting around discontinuities may invalidate RD designs
(Lee, 2005; McCrary, 2005). We view these results as a cautionary note that such designs should
not be applied in contexts where schools are able to set prices and influence their enrollments,
and parents have substantial school choice.2 As we discuss below, we have no reason to believe
that this conclusion generalizes to previous studies, which we interpret as focusing on situations
in which students are required to attend local schools, and in which schools cannot control their
enrollments but rather react mechanically to them.
In addition to the papers cited above, our work is relevant to several existing literatures.
First, it is related to theoretical models of school choice (Manski, 1992; Epple and Romano, 1998,
2002; Epple, Figlio, and Romano, 2002). In these frameworks, schools are essentially passive
“clubs” whose main attribute is the average ability and income of their students. In our model,
in contrast, schools actively choose the level of educational quality to supply. This comes at a
cost, as we must abstract from peer effects in order to maintain tractability. In the long run it2As we discuss below, private schools in Chile can turn away students for a wide variety of reasons, and parents
in turn can use any public or private voucher school that is willing to accept their children.
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would clearly be desirable to combine both peer effects and the elements of quality differentiation
we emphasize.
Second, in seeking to understand the mechanisms behind the determination of class size, we
view our work as complementary to Lazear (2001), which focuses on how schools allocate students
with heterogeneous levels of self-discipline into classes of different sizes. We abstract from sorting
within schools and instead focus on sorting between schools with different average class sizes.
Third, our results are related to studies of school choice and stratification. One strand of this
literature analyzes how greater choice due to greater school district availability affects sorting out-
comes (Bayer, McMillan, and Rueben, 2004; Clotfelter, 1999; Rothstein, forthcoming; Urquiola,
2005), while another considers the effects of the introduction of vouchers (Nechyba, 2003; Hsieh
and Urquiola, 2006). In contrast, we focus on how a regulatory constraint on class size affects
sorting outcomes in a market that is already largely liberalized.
Fourth, in its focus on how households of different incomes sort into schools of different qual-
ities, our approach has elements in common with hedonic models of matching between heteroge-
neous consumers and heterogeneous producers (Rosen, 1974; Ekeland, Heckman, and Nesheim,
2004), assignment models of matching between heterogeneous workers and jobs requiring hetero-
geneous skills (Tinbergen, 1956; Sattinger, 1993; Teulings, 1995),3 and the discrete-choice model
that forms the basis of demand-system estimation in Berry, Levinsohn, and Pakes (1995). Our
work differs from these literatures both in that we focus on the role of institutional constraints in
the matching process, and in that we look for evidence of simple reduced-form patterns predicted
by our model, rather than attempting to estimate underlying preference or technology parameters.
Finally, this paper is related to work on quality choice by firms (Gabszewicz and Thisse, 1979;
Shaked and Sutton, 1982; Anderson and de Palma, 2001), and in particular to Verhoogen (2006),
which models quality choice by Mexican firms facing heterogeneous consumers in the domestic and
export markets. The application of a model of firm quality choice to the education sector appears
to be novel. The main advantages of this paper over the existing quality-choice literature are
that class size is arguably a better measure of product quality than has been previously available,
and that we allow for—and have data on—consumer heterogeneity at the household, rather than
market, level.3Nesheim (2002) integrates the peer-effects mechanism discussed above into a hedonic model along the lines of
Ekeland, Heckman, and Nesheim (2004).
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The remainder of the paper is organized as follows. Section 2 provides institutional back-
ground, and section 3 sets out the model. Section 4 describes the data. Section 5 discusses
testable implications and presents the results. Section 6 concludes.
2 Chile’s School System
We focus on Chile’s primary (K-8) school sector, which comprises three types of schools:
1. Public or municipal schools are run by roughly 300 municipalities which receive a per-
student “voucher” payment from the central government. These schools cannot turn away
students unless oversubscribed, and are limited to a maximum class size of 45.4 In most
municipalities, they are the suppliers of last resort.
2. Private subsidized or voucher schools are independent, and since 1981 have received exactly
the same per student subsidy as municipal schools.5 They are also constrained to a maximum
class size of 45, but unlike public schools, have wide latitude regarding student selection.
3. Private unsubsidized schools are also independent, but receive no explicit subsidies.
We focus on primary schools because class size, a central variable in our analysis, is more clearly
defined at the primary than at the secondary level.
Private schools (both voucher and unsubsidized) account for about 40 percent of all schools,
and voucher schools alone account for about 34 percent. In urban areas, these shares are 58 and
47 percent, respectively. Private schools can be explicitly for-profit, and using their tax status to
classify them, Elacqua (2005) calculates that about 70 percent of them are indeed operated as such.
Further, even non-profit schools can legally distribute dividends to principals or board members.
A handful of private schools are run by privately or publicly held corporations that control chains
of schools, but the modal one is owned and managed by a single principal/entrepreneur.
Public primary schools are not allowed to charge “add on” tuition supplemental to the voucher
subsidy.6 While initially voucher private schools were subject to the same constraint, this restric-4In very few instances schools are temporarily authorized to have classes of 46 or 47, but they receive no payments
for the students above 45.5The payment varies somewhat by location, but within an area voucher and municipal schools receive equal
payments. For further details on the creation of the voucher system, see Hsieh and Urquiola (2006).6Public secondary schools can charge add-ons, but in practice very few do
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tion was eased beginning with the 1994 school year. Since then, they have been able to charge
tuition as high as four times the voucher payment. The resources these institutions raise through
tuition are equal to about 20 percent of their State funding, although their distribution is highly
unequal.
A final relevant fact is that as elsewhere, primary schools in Chile are not large; 95 percent
of urban ones have fewer than 135 students in the 4th grade.7 As Figure 1 illustrates, they
therefore run relatively few classes per grade. In 2002, for instance, 53 percent of urban private
schools had only one 4th grade class, while 86 and 95 percent had two or fewer or three or fewer,
respectively. Public schools run a slightly higher average number of classes, but 91 percent of
them still operate three or fewer 4th grades. Below, we use these facts to motivate an integer
constraint on the number of classrooms per grade.
3 The Model
This section develops a model of quality differentiation and sorting in the Chilean school market.
We model parents’ demand for education in a standard discrete-choice framework with quality
differentiation (McFadden, 1974; Anderson, de Palma, and Thisse, 1992; Berry, Levinsohn, and
Pakes, 1995). We solve the optimization problems of private, profit-maximizing schools in two
cases corresponding to the different constraints facing unsubsidized and voucher schools.
To simplify the model, we take the set of schools in each segment of the private education
market—unsubsidized and voucher—as given. This is a strong assumption, but our view is that
including a detailed analysis of entry and possible switching between segments would add more
tedious complication than real insight. Under the assumption that each school thinks of itself
as small relative to the market as a whole, the extent of entry would not affect the optimizing
decisions of particular schools, and our two main implications would continue to hold. For these
reasons, we focus on the optimizing decisions of schools conditional on being in the market.
It is worth emphasizing that our two main implications do not hold for all possible parameter
values in our model. Rather, we show that there exists a set of parameter values for which
the implications do hold. In Section 4, we examine whether there is empirical support for the7For reasons discussed below, we focus on urban schools and primarily on 4th grade observations. The results
for the full sample and for other grades, however, are quite similar.
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implications.
3.1 Basic Set-up
Schools are assumed to be heterogeneous in a productivity parameter λ, which one can think
of as the ability of their principal/entrepreneur or their reputation. In each market segment,
there is a continuum of schools with density fm (λ) over the interval [λm, λm), where m = u for
“unsubsidized” or m = v for “voucher.” The λ parameter is a fixed characteristic, and identifies
each school uniquely within each segment. To simplify notation, we do not include a subscript on
λ indicating the market segment; this should be clear from the context.
There is a continuum of households of mass M , heterogeneous in income. Each is assumed to
have one child and to enroll the child in a private school.8 We assume that households have the
following indirect utility function:
U(p, q ; θ) = θq − p + ε (1)
where q is school quality, p is tuition, and ε is a random term capturing the utility of a partic-
ular household-school match. This specification follows from a direct utility function in which
households differ only in income and in which θ, a monotonically increasing function of house-
hold income, can be interpreted as households’ willingness to pay for quality.9 We assume that θ
has a distribution g(θ) with positive support over (θ, θ) where θ, θ > 0, reflecting the underlying
distribution of income among households. We assume the random-utility term ε is i.i.d. across
households with a double-exponential distribution with c.d.f. F (ε) = exp[− exp
(− ε
µ + γ)]
,10
where µ is a positive constant that captures the degree of differentiation between schools.11
8Including the public school sector in the choice set would add additional terms to the demand function below,but would not alter the main conclusions.
9Suppose: U(z, q) = u(z) + q + εwhere z is a non-differentiated numeraire good, q is the quality of education, ε is a mean-zero random term, andthe sub-utility function u(·) has u′(·) > 0 and u′′(·) < 0. If households are on their budget constraint, then indirectutility is: U(p, q ; y) = u (y − p) + q + εwhere p is tuition. Taking a first-order approximation of u(·) around y, and setting θ ≡ 1/u′ (y) , U ≡ U
u′(y)− u(y)
u′(y),
and ε ≡ εu′(y)
, we have (1). Note that the u(y)u′(y)
term is constant across schools and does not affect the household’schoice probabilities.
10We assume γ = 0.5772 (Euler’s constant), ensuring that the expectation of ε is zero.11As µ → 0, the distribution of household-school-specific utility terms collapses to a point, and the model
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A standard derivation yields the probability that a household chooses school λ in a given
segment, conditional on having willingness to pay for quality θ:12
s(λ| θ) =1
Ω(θ)exp
(θq − p
µ
)(2)
where
Ω(θ) ≡∫ λv
λv
exp(
θq − p
µ
)fv(λ) dλ +
∫ λu
λu
exp(
θq − p
µ
)fu(λ) dλ
We assume schools cannot discriminate among households, and price and quality are equal for all
households in a given school. Equation (2) represents the expected demand of a household with
willingness to pay θ for school λ. As is common in monopolistic-competition models, we treat
individual schools as small relative to the market as a whole, and assume that they ignore their
effect on the aggregate Ω(θ).
The expected market share of school λ, integrating over all households, is:
s(λ) =∫ θ
θs(λ|θ)g(θ)dθ (3)
Demand is then:
d(λ) = Ms(λ) (4)
Demand for school λ is declining in price and increasing in quality, and higher-θ households
are more sensitive to quality for a given price. Note that this specification combines horizontal
differentiation, in the sense that if all schools’ tuitions are equal each will face positive demand with
positive probability, with vertical differentiation, in the sense that if tuitions are equal, higher-
quality schools will face higher demand. Throughout we will assume schools are risk-neutral, and
ignore the fact that the expression for d(λ) represents an expectation.
Each school is constrained to offer just one “product,” and is assumed to produce quality with
a technology
q = λ ln(
T
x/n
)(5)
where x is enrollment, n is the number of classrooms, the denominator is class size, and T is a
approaches perfect competition.12See for example Anderson, de Palma, and Thisse (1992, theorem 2.2, p. 39).
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constant that represents the technological maximum of class size. The term in parentheses is by
assumption always greater than or equal to one. This specification captures the idea that the
larger is class size the less teacher attention is available for each individual student.13 Note that
a given reduction in class size raises quality more at higher-λ schools. This complementarity will
be crucial in what follows.
Combining (2), (3), (4) and (5), we have the following expression for demand:
d(λ) =∫ θ
θ
1Ω(θ)
(nT
x
)λθµ
e− p
µ Mg(θ)dθ (6)
In order to guarantee an interior solution for the school’s optimization problem we must impose
a lower bound on the degree of differentiation between schools. The condition:
µ > λmθ for m = u, v (7)
ensures that the exponent on the(
nTx
)term in (6) is less than one, and will be sufficient. Intu-
itively, the lower bound on the degree of differentiation between schools limits the extent to which
demand for a school increases with a given class-size reduction.
It will be convenient to define the average willingness to pay of households that send their
children to school λ:
Θ(λ) ≡ E(θ|λ) =∫ θ
θθ
[s(λ| θ)g(θ)
s(λ)
]dθ (8)
where by Bayes’ rule the term in brackets represents the probability density of θ conditional on
households sending their children to school λ.14
To derive schools’ profits, let p be the tuition schools charge, and let τ be the per-student
subsidy they receive from the government (which is zero for private unsubsidized schools). We
assume that τ is greater than the average variable cost per student if schools have class sizes13An interesting extension might be to include an endogenous term in the numerator representing teacher quality,
an additional choice variable for schools. We leave this task for future work, in part because we do not have dataon teacher salaries or other teacher characteristics.
14Note that the assumption that schools cannot price discriminate implies that the price term can be broughtoutside the integral in (6), and Θ can be written as:
Θ(λ) =
θ
θθ
Ω(θ)
nTx
θλµ g(θ)dθ θ
θ1
Ω(θ)
nTx
θλµ g(θ)dθ
(9)
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of 45: τ > c + Fc45 . We also assume that τ is less than the tuition that schools would charge in
the absence of the subsidy; this will eliminate the possibility that the optimal price is negative.
Suppose there is a fixed cost Fs of running a school, a fixed cost Fc of operating a classroom, and
a constant variable cost c for each student. Profit is then:
π(p, n, x;λ) = (p + τ − c) x − nFc − Fs (10)
The presence of Fs generates increasing returns to scale at the school level. There is no cost of
differentiation. As a consequence, every school differentiates its “product” and has a monopoly
over the product it offers.
3.2 Schools’ Optimization Problem
The problem facing schools is to maximize profit over the choice of the number of classrooms,
tuition, and enrollment:
maxp,x,n
π(p, x, n;λ) (11)
This optimization is subject to three constraints, not all of which apply at all times:
1. Enrollment cannot exceed demand:
x ≤ d(λ) (12)
where d(λ) is given by (6). This constraint applies in all cases.15
2. The number of classrooms must be a positive integer
n ∈ (13)
where is the set of natural numbers 1, 2, 3, .... As discussed above, this restriction is
relevant to Chilean primary schools, the vast majority of which run three or fewer classes
per grade. Given their generally small size, it would probably also apply to primary schools
in most countries.15This constraint ends up binding in every case we present here, and we could treat it as an equality constraint
or substitute d(λ) for x in (10) and (11). But there exist realistic cases in which it does not bind—i.e. if there isalso a tuition constraint, as there was for voucher schools pre-1994. For conceptual clarity, we leave the constraintas an inequality.
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3. The class-size cap:x
n≤ 45 (14)
which applies only to voucher schools in Chile. Class size caps are certainly not universal,
but are also relevant in jurisdictions including other countries and states in the U.S.
For expository purposes, we consider first the case of private unsubsidized schools, which are
not subject to the class-size cap, and then the case of voucher schools. The integer restriction
complicates the solution to the optimization problem, since we cannot simply solve a set of first-
order conditions. A common approach is to first relax this constraint, and then compare solutions
with and without the relaxation, and this is how we proceed below. In the main text, we report key
results; derivations of those results appear in Appendix A, with section numbers corresponding
to the cases. To reduce clutter, we do not write explicitly the dependence of the endogenous
variables—price, enrollment, number of classrooms, demand, and average willingness to pay—on
λ, but this dependence should be understood.
Case 1: Private Unsubsidized Schools
Case 1.1: Divisible Classrooms
In this case, schools are subject only to the constraint that enrollment not exceed demand (12).
The state subsidy, τ , is zero, but we leave it in the equations for purposes of comparison with the
cases that follow. The unique solution to the first-order conditions for a given value of λ is:
p∗ = µ + c − τ + λΘ (15a)
x∗ = d (15b)
n∗ =x∗λΘ
Fc(15c)
where d is given by (6) and Θ by (8). In order for the second-order conditions to be satisfied and
for this solution to represent a maximum, it must be the case that:
Ψ ≡ Θ −λσ2
θ|λµ
> 0 (16)
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where σ2θ|λ is the variance of θ among households with children attending school λ.16 Assumption
(7) guarantees that this condition holds. (See Appendix A.1.1.)
Unfortunately, there is no explicit analytical solution to (15a)-(15c). But using the implicit
function theorem, we can nonetheless sign the relationship between the various endogenous vari-
ables and the underlying productivity parameter, λ. In particular:
∂p
∂λ> 0 (17a)
∂x
∂λ> 0 (17b)
∂n
∂λ> 0 (17c)
∂Θ∂λ
> 0 (17d)
∂
∂λ
(x
n
)< 0 (17e)
Higher-λ schools charge higher tuition, have larger enrollments, operate more classrooms, have
smaller class sizes, and attract students whose families are on average wealthier and have higher
willingness to pay for quality. All of these relationships are monotonic in λ. The monotonically
declining relationship between class size and λ is illustrated in Figure 2.
It will be convenient to define γk ≡ n∗−1(k), where n(·) is the function defined by (15c), and
the fact that ∂n∂λ > 0 everywhere ensures that it is invertible. Then γk is the value of λ at which
the optimal number of classrooms is k in this divisible-classrooms case.
Case 1.2: Indivisible Classrooms
Now add the restriction that the number of classrooms must be an integer (13), maintaining
the demand constraint (12). Our strategy for dealing with the integer constraint is to first solve
the optimization problem for a given number of classrooms, and to then characterize the sets of
schools that choose each integer number of classrooms.
To begin, suppose that n is fixed and think of it as a parameter. The solution to the opti-16That is, define:
σ2θ|λ ≡
θ
θ
θ2
s(λ| θ)g(θ)
s(λ)
dθ − Θ2
11
mization problem of school λ is:
p∗ = µ + c − τ + λΘ (18a)
x∗ = d (18b)
where d is given by (6) and Θ by (8).
Price and average willingness to pay (i.e. average household income) are again unambiguously
increasing in λ:
∂p
∂λ> 0 (19a)
∂Θ∂λ
> 0 (19b)
where we use partial derivatives to indicate that n is being held constant.
There is a subtlety in the relationship between enrollment and λ. On one hand, there is a
direct effect of a higher λ on demand: for a given class size, households prefer higher-λ schools.
On the other hand, there is an indirect effect: as is evident in (6), at higher values of λ a given
increase in enrollment has a larger negative effect on demand. It is theoretically possible in this
case that the latter effect dominates, making it optimal for higher-λ schools to raise prices such
that enrollment, conditional on a given number of classrooms, is decreasing in λ. In that case, our
testable implications (discussed in the introduction and in more detail below) do not hold. We
focus instead on the case where enrollment is increasing in λ. A necessary and sufficient condition
for this, which we assume hereafter, is:17
ln(
nT
x
)>
ΘΨ
(20)
17If we replace the production function for quality (5) by a general function q(x,n, λ), then the condition is:
− ∂2q
∂x∂λ<
σ2
θ|λµΘ
∂q
∂x+
1
x
∂q
∂λ
which makes it clear that the indirect effect of higher λ described above (represented by ∂2q∂x∂λ
) must be small in
magnitude relative to the direct effect (represented by ∂q∂λ
).
12
where Ψ is defined as in (16).18 Under this assumption, we have
∂x
∂λ> 0 (21)
Since n is fixed, (21) implies that ∂∂λ
(xn
)> 0; for a given number of classrooms, class size is
increasing in λ. Conditional on n, higher-λ schools are better able to fill their classrooms.
Now consider the issue of which integer number of classrooms schools choose. Let
π∗(n, λ) = π(p∗(n, λ), x∗(n, λ), n;λ) (22)
be school λ’s optimal profit when the number of classrooms is fixed at n, where p∗(n, λ) and
x∗(n, λ) are given by (18a) and (18b). Define Λk to be the set of all schools for which a given
integer k is the optimal number of classrooms:
Λk = λ : π∗(k, λ) ≥ π∗(j, λ) ∀ j = k, j ∈ (23)
Note that γk, the unique value of λ at which the optimal number of classrooms is k in the
divisible-classrooms case, is an element of Λk.19 The following lemma characterizes the sets Λk.
Lemma 1. In Case 1.2, under assumptions (1), (5), (7), (10), and (20), there exist unique
positive integers k and k, and a unique set of critical values ρk−1, ρk, ..., ρk−1, ρk such that:
Λk = λ : ρk−1 ≤ λ < ρk for k = k, k + 1, ..., k − 1, k
where λu = ρk−1 < ρk < ... < ρk = λu.
For the proof, see Appendix A.1.2. The lemma indicates that the set of private unsubsidized
schools can be partitioned into a set of intervals, [ρk−1, ρk), [ρk, ρk+1) etc., where the optimal
integer number of classrooms is k in the first interval, k + 1 in the next, and so on. Within each
of the intervals, the results (18a)-(19b) and (21) hold.18Since Ψ ≤ Θ, a sufficient condition is simply that T ≥ e ∗ x
n
.
19By the definition of γk:π∗(k, γk) > π∗(j, γk) ∀ j = k, where j ∈
Since this is true ∀ k ∈ , it must be true ∀ j ∈ . Hence γk ∈ Λk.
13
The appendix shows that at the critical values ρk, ρk+1, ..., ρk−1, there are positive disconti-
nuities in tuition, enrollment and average willingness to pay, and negative discontinuities in class
size. The facts that tuition, enrollment and average willingness to pay are increasing in λ between
the critical values and that they jump up at the critical values imply that all are monotonically
increasing in λ for all λ.
Figure 3 plots class size vs. λ in the case where k = 1 and k = 6. The fact that γk ∈ Λk
means that each upward-sloping portion of the graph intersects the graph for the continuous-n
case, indicated by the dashed line. The result is a saw-tooth pattern around the downward-sloping
curve (represented by a dashed line) from Case 1.1.
Case 2: Voucher Schools
Case 2.1: Divisible Classrooms
As stated above, private voucher schools are subject to a policy-induced constraint: the class size
cap at 45. In this case, with divisible classrooms, there is a single critical value of λ, call it α,
below which the class-size cap binds and above which it does not. If λ ≤ α and the cap binds:
p∗ = c − τ + µ +Fc
45(24a)
x∗ = d (24b)
n∗ =x∗
45(24c)
where d is given by (6) and Θ by (8). The slopes with respect to λ in this sub-case are:
∂p
∂λ= 0 (25a)
∂x
∂λ> 0 (25b)
∂n
∂λ> 0 (25c)
∂Θ∂λ
> 0 (25d)
∂
∂λ
(x
n
)= 0 (25e)
Although class size and (perhaps surprisingly) price are constant, enrollment, the number of
classrooms, and average household income are increasing in the productivity parameter. The last
14
fact is true because λ raises quality conditional on class size.
If λ > α and the class-size cap does not bind, then we are back in the no-class-size-cap case
(Case 1.1) but with τ > 0. The solution is given by (15a)-(15c) and the results (17a)-(17e) again
hold. The critical value α is defined implicitly by the equation
αΘ(α) =Fc
45(26)
This is the value of λ at which xn = 45 in Case 1.1. Note that there is no guarantee that
α ∈ (λv, λv), i.e. that the critical value falls in the relevant range of λ. At the critical value,
the optimal choices p∗, x∗, and n∗ are equal in the two sub-cases (cap binding, cap non binding).
Hence p∗, x∗ and n∗ are continuous, p∗ is weakly monotonically increasing and x∗ and n∗ are
strictly monotonically increasing over the entire range of λ.
Again it will be convenient to define the value of λ at which the optimal number of classrooms
is k: δk ≡ n∗−1(k) where n∗(·) is defined by (24c) in the binding cap sub-case and by (15c) in
the non-binding-cap sub-case, with invertibility following from (25c) and (17c). Also, note that
in both sub-cases p∗ > 0 as long as the subsidy, τ , is less than what a school would charge in the
absence of the subsidy, as we have assumed.
Figure 4 illustrates the relationship between class size and λ in the case where λv < α < λv. To
the left of α, class size is flat at 45; to the right, it coincides with the case of private unsubsidized
schools illustrated in Figure 2.
Case 2.2: Indivisible Classrooms
Now consider the case of voucher schools with indivisible classrooms. We proceed as in Case 1.2
above, first solving the optimization problem for a given value of n, and then characterizing the
sets of schools that choose each n.
Fix n. For a given n there is a single critical value of λ, call it βn, above which the class-size
cap binds and below which it does not. If λ ≤ βn and the class-size cap does not bind, then the
solution to the school’s optimization problem is the same as for private unsubsidized schools in
Case 1.2, given by (18a)-(18b), with slopes vs. λ given by (19a), (19b), and (21). As in that case,
price and average willingness to pay are unambiguously increasing in λ, and under assumption
(20) enrollment and class size are increasing in λ as well.
15
If λ > βn and the class-size cap binds, then we have two endogenous variables and two binding
constraints. The constraints pin down the optimal values of p and x:
x∗ = 45n (27a)
p∗ = µ ln Σ − µ ln(45n) (27b)
where
Σ ≡∫ θ
θ
1Ω(θ)
(T
45
) θλµ
g(θ)dθ (28)
The slopes with respect to λ are:
∂p
∂λ> 0 (29a)
∂x
∂λ=
∂
∂λ
(x
n
)= 0 (29b)
∂Θ∂λ
> 0 (29c)
The critical value βn is defined implicitly by the equation:
βn Θ(βn) = µ ln Σ − µ ln(45n) − c + τ − µ (30)
where Θ is given by (8). The critical value of λ is the point at which class size reaches 45 in Case
1.2. At this value, the optimal choices of p and x are the same in the two sub-cases (class-size
cap binding and not binding). Hence for a given n, p∗, x∗, and Θ are continuous, p∗ and Θ are
strictly monotonically increasing in λ, and x∗ and x∗n are weakly monotonically increasing in λ.
Define Λk as the set of schools for which k is the optimal integer number of classrooms, as in
(23). We again have a lemma to characterize these sets:
Lemma 2. In Case 2.2, under assumptions (1), (5), (7), (10), and (20), there exist unique
integers k and k and a unique set of critical values νk, νk+1, ...νk−1, νk such that:
Λk = λ : νk−1 ≤ λ < νk for k = k, k + 1, ..., k
where λv = νk−1 < νk < ... < νk−1 < νk = λv.
16
The proof is in Appendix A.2.2. Within each of the subsets Λk the above results for fixed n hold.
Note that there is no guarantee that the value of λ at which the class-size cap starts to bind
for a given integer k, βk, is to the left of the value of λ at which it becomes optimal to add an
additional classroom, νk. In the empirical part of the paper, we present evidence consistent with
the hypothesis that βk < νk for low values of k.
The appendix shows that at the critical values νk, νk+1, ..., νk−1, enrollment is increasing,
average willingness to pay is non-decreasing, and class size is non-increasing. Hence enrollment is
strictly monotonically increasing and average willingness to pay is weakly monotonically increasing
in λ for all λ.20
Figure 5 plots class size against λ for the case where βk < νk for k = 1 and k = 2 but not
thereafter. Again, the curves for each integer k intersect the curve from the divisible-classrooms
case (dashed line) at the values of λ at which the optimal n for the divisible-classrooms case (Case
2.1) is an integer.
Figure 5 exhibits an approximately inverted-U relationship between class size and λ. It results
from the interaction of two effects: (1) conditional on a value of n, class size is increasing in λ,
since greater values of λ make schools better able to fill their classrooms; and (2) across values of
n, class size is declining in λ, since greater λ leads schools to increase the number of classrooms,
reducing class size. While λ is not observable, the model predicts that average willingness to pay,
Θ, and hence average household income are (weakly) monotonically increasing in λ. We thus have
our first testable implication:
Testable Implication 1 There is an approximately inverted-U relationship between class size
and average household income in equilibrium.
Figure 5 also illustrates that schools between β1 and ν1 have enrollment 45 and schools between
β2 and ν2 have enrollment 90. Intuitively, in these regions schools raise tuition rather than
incurring the fixed cost of starting a new classroom.21 Although we do not model the possibility
explicitly, one can easily imagine that in the presence of stochasticity in demand and menu costs of20The direction of the change in price at each critical value is ambiguous in this case. The slope ∂p
∂λis greater
when the class-size cap binds than when it does not bind, since higher λ leads schools raise prices to keep class-sizepegged at 45. Consequently, price may be greater to the left of νk than to the right.
21The appendix shows that for a given number of classrooms, tuition (p) is more steeply sloped in λ in the regionwhere the class-size cap binds than in the region where the cap does not bind.
17
changing tuition, schools might turn away potential students for the same reason.22 Since average
household income is monotonically increasing in λ, the stacking implies discontinuous changes in
average household income with respect to enrollment at enrollments of 45, 90, and so on.23 More
generally, we have our second testable implication:
Testable Implication 2 Schools may stack at enrollments that are multiples of 45, implying
discontinuous changes in average household income with respect to enrollment at those
points.
4 Data
To examine our model’s implications, we draw on two sources of information. The first is admin-
istrative information on schools’ grade-specific enrollments and the number of classrooms they
operate, from which we calculate their average class sizes. The second is data from the SIMCE
testing system24 which tracks schools’ math and language performance. SIMCE data are avail-
able at the school level since 1988. Since 1997, they also exist at the individual level and include
information on students’ household income, parental schooling, and other characteristics (this
information is collected via a questionnaire sent home for parental response).
Depending on the year, the SIMCE tests 4th, 8th, or 10th graders. We focus on the 4th grade
because class size, one of the key variables in our model, is best-defined in early primary grades.
We also focus on the 2002 cross section because it is the most recent 4th grade testing round for
which we have complete data.25 We note, however, that the general conclusions we obtain emerge
in other cross-sections we have analyzed (for instance, the 1999 4th grade and the 2004 8th grade
waves).26
Table 1 presents descriptive statistics for each type of school in 2002. In cross-section, stu-
dents in private unsubsidized schools tend to be of higher socioeconomic status than students22In Chile, private schools have wide latitude regarding student selection, and can turn away students for reasons
ranging from the desire to maintain a given class size, to the desire to maintain religious uniformity.23Technically speaking, the model predicts a discontinuity in Θ even in the absence of stacking. Average will-
ingness to pay, Θ, is a smooth, monotonically increasing function of class size, xn. (See (59) and (60) in Appendix
A.2.2.) Class size jumps discontinuously at the critical values νk. Hence Θ must also jump at νk. Our view,however, is that the discontinuity due to stacking is the more empirically important one.
24SIMCE, which stands for Sistema de Medicion de la Calidad de la Educacion (Educational Quality MeasurementSystem), is Chile’s standardized testing program.
25The 2003 and 2004 testing rounds were for the 10th and 8th grades, respectively.26The 8th grade is still part of primary school in Chile.
18
in voucher schools. Their household income and mothers’ and fathers’ schooling are higher, and
unsurprisingly, test scores follow the same pattern. In addition, unsubsidized schools have lower
average class sizes. All of these facts are consistent with the hypothesis that unsubsidized schools
tend to have higher λ than voucher schools. Note, however, that these schools are typically
smaller in terms of enrollment than voucher schools. On this dimension, our model is not an
accurate stylization.27 Figure 6 presents densities of log income and mothers’ schooling by type
of school, showing that unsubsidized schools tend to attract richer households, voucher schools
middle-income households, and public schools poorer households.
5 Results
We now take the testable implications to the data. We review each implication, discuss how it
relates to the existing literature, and present the empirical results. We focus on urban schools
because we want to consider settings where enrollment and class size are determined by schools’
and households’ choices, and not constrained by the size of the market, as could happen in rural
areas. The conclusions of our empirical analyses, however, turn out to not be much affected by
this selection.
5.1 Class Size and Income in Cross-Section: The Inverted U
As discussed in Section 3, the first testable prediction is an inverted-U relationship between class
size and average household income. The upward-sloping portion in such a pattern reflects the
fact that low-λ schools may have trouble filling their existing classroom(s) to achieve the desired
class size. The downward-sloping portion reflects the fact that among the higher-λ schools used
by higher-income households, quality considerations dominate: these schools find it profitable to
restrict class size and charge higher tuition. These mechanisms are consistent with anecdotal
evidence from Chile, where there is a widespread perception that many lower-quality voucher
schools are small “mom and pop” operations that struggle to fill their classrooms. In contrast,
voucher schools run by larger firms have sufficient demand to operate multiple classrooms, and
are generally perceived to be of higher quality.27In a model with peer effects, schools might have an incentive to keep enrollment low to avoid diluting the
quality of the student pool. In the long run, it would be important to incorporate such concerns into a frameworksuch as ours.
19
Figure 7 plots class size against log average household income among all private urban schools
(Panel A), voucher schools only (Panel B), and unsubsidized schools only (Panel C). In all three
panels, the thicker line plots fitted values of a locally weighted regression of class size on log
income, and the thinner lines plot the fitted values, along with 95 percent confidence intervals,
of a regression of class size on a fifth-order polynomial in log income. In Panels A and B, a
clear overall inverted-U pattern is observed. The pattern is driven by the voucher schools, which
make up more than 75 percent of the private school market. There is no inverted U among the
unsubsidized schools (panel C); this is consistent with the idea that unsubsidized schools are
high-λ institutions for which filling classrooms is not the primary challenge. Panels D, E and F
present similar evidence using mothers’ schooling rather than income on the x-axis. The overall
patterns also describe an inverted U, and illustrate that among all urban private schools, average
class size rises with mothers’ schooling up to about the point where the average mother is a high
school graduate, and declines thereafter.
A possible concern with these figures is that the inverted-U patterns reflect the composition
of schools across regions, rather than cross-sectional patterns within markets. To examine this
possibility, Table 2 reports simple regressions of class size on polynomials in log income (Panel
A) and mother’s schooling (Panel B). To facilitate the interpretation of the coefficients, we use
second-order polynomials rather than the fifth-order polynomials used in Figure 7. The inverted-
U pattern is not sensitive to the order of the polynomial, and figures that control for regional
composition are available from the authors. Columns 1, 4 and 7 report results without region
dummies for all private schools, voucher schools and unsubsidized private schools respectively;
Columns 2, 5 and 8 include dummies for each of Chile’s 13 regions; and Columns 3, 6 and 9
include dummies for 318 communes or municipalities. Among all private schools or voucher
schools, the quadratic term is uniformly negative and significant, and not much affected by the
regional controls. The inverted-U patterns seem to hold even within much more narrowly defined
urban markets.28
Another potential concern is that average household income is a poor proxy for school pro-
ductivity, λ, and that the inverted U is generated by a mechanism unrelated to the school-quality
choice that we model. To investigate this, Figure 8 plots a locally weighted regression of tuition28We have replicated these results using using 8th rather than 4th grade class size as the dependent variable, with
similar results.
20
against average household income, as well as a fitted fifth-order polynomial and 95 percent con-
fidence interval, as in Figure 7. Consistent with the predictions of the model, we find a strong
positive correlation between tuition and income. While ours is obviously not the only model that
would predict such a correlation, we take this result as reassuring that our model is consistent
with first-order patterns in the data and that average household income is a correlate of school
quality.
The inverted-U finding is relevant to the literature on the effect of class size on student achieve-
ment. In this literature, it is common to see cross-sectional estimates that are of the “wrong” sign
or essentially equal to zero. Since student achievement tends to be strongly correlated with house-
hold income and since imprecision in measurement makes it is difficult to control completely for
differences in income, the inverted-U pattern suggests that cross-sectional regressions are likely to
understate the effect of class size reductions among lower-income voucher schools, and to overstate
it among higher-income ones.29
Additionally, previous work has revealed positive correlations between class size and enroll-
ment and between enrollment and household socioeconomic status among public schools in Israel
(Angrist and Lavy, 1999) and Bolivia (Urquiola, 2006),30 but to our knowledge our paper is the
first to provide a theoretical rationale or empirical evidence for a non-linear relationship between
class size and household income. We conjecture that the inverted-U pattern is likely to arise
among private primary schools in other countries.31
5.2 Stacking at Multiples of Class-Size Cap
Our second testable implication is related to regression discontinuity (RD) designs that exploit
the discontinuous relation between enrollment and class size induced by class-size caps.32 Figure
9 shows that the Chilean setting appears to be a promising one for an RD-based evaluation of
the effect of class size. The solid line plots the relation between class size and enrollment that29Consistent with Figure 7 (panel A), for instance, we find that a cross-sectional bi-variate regression of test scores
on class size among all urban private schools results is an insignificant point estimate. If the sample is restricted toschools with mean mothers’ schooling below 12 years of age, however, the coefficient is positive and significant. Ifit is restricted to schools with a mean above 12, it is negative and significant at the 10 percent level.
30Mizala and Romaguera (2002) present evidence of a positive correlation between enrollment and householdsocioeconomic status in Chile.
31Note that the inverted-U pattern can arise even in the absence of a class size cap, as Figure 3 illustrates.32For overviews and history of the RD design, see Angrist and Krueger (1999), van der Klaauw (2002), and
Shadish, Cook, and Campbell (2002).
21
would be observed if schools mechanically expanded class size with enrollment until reaching the
cap (45, in Chile), i.e., if class size were determined by:
(x
n
)p=
x
int(
x−145
)+ 1
(31)
where the superscript p indicates this is the predicted level. This results in a “saw-tooth” pattern
in which class size increases one for one with enrollment until, at 46, a new class is added and
average class size falls to 23, with other discontinuities observed at 90, 135, etc. Using data for
voucher schools for 2002, the circles plot enrollment-cell means of class size, and the dotted line
plots a smoothed value of these, showing that the rule predicts actual class size quite closely.
Aggregated to the enrollment-cell level as in this figure, a regression of actual on predicted class
size would produce an R2 greater than 0.9—a better “first stage” than that in any RD-based
class-size study we are aware of.33
The idea behind RD designs is that discontinuities like those in Figure 9 can be used to
identify the causal effect of class size even if enrollment is systematically related to factors that
affect students’ outcomes. The key assumption is that enrollment is smoothly related to student
characteristics and other factors that affect achievement at multiples of the class-size cap. If this
is the case, students in schools with enrollments of 45 arguably provide an adequate control group
for those in schools with enrollments of 46, for example, and differences in their performance can
be attributed to the very different class sizes they experience.
Table 3 reports the results of a standard RD analysis using school-level data from 2002.
Column (1) presents a regression of class size on a piecewise linear spline for enrollment, as in
van der Klaauw (2002). The first four dummy variables indicate whether schools’ enrollments are
above the first four cutoffs, and their corresponding coefficients thus provide direct estimates of
the average decline in class size that takes place in the vicinity of those breaks.34 Consistent with
the visual evidence in Figure 9, the first one suggests that class size drops by about 17 students at
the first threshold. The declines at the first three of the four cutoffs are statistically significant,33For visual clarity, Figure 9 excludes schools that declare 4th grade enrollments above 180 students (less than
two percent of all schools), thus focusing on only the first three discontinuities in the enrollment/class size relation.34For the sake of space, Table 2 and all subsequent ones exclude schools that declare 4th grade enrollments above
225 (less than one percent of all schools), thus focusing on only the first four discontinuities in the enrollment/classsize relation.
22
and become progressively smaller.35 In this specification, all standard errors are clustered by
enrollment levels, as Lee and Card (2004) suggest is appropriate in RD settings in which the
assignment variable (here enrollment) is discrete.
There is prima-facie evidence that the standard RD strategy would generate significant results.
Figure 10 presents “raw” enrollment-cell means of math and language test scores, along with the
fitted values of a locally weighted regression calculated within each enrollment segment. Particu-
larly around the first cutoff, which accounts for the greatest density of schools (see Figure 1), the
discrete reduction in class size is mirrored by an associated increase in average test scores. This
observation is also borne out by the regression results. Columns 2-3 of Table 3 present reduced-
form regressions of average math and language scores on the piecewise linear spline in enrollment.
We see positive and significant increases in scores at the first cutoff, and generally positive (al-
though not significant) increases at subsequent ones. Columns 4-5 report instrumental-variables
(IV) specifications, where dummy variables for the first four cutoffs are used as instruments for
class size. In both cases, class size appears to have a negative and significant effect on test scores.36
Focusing more narrowly around the discontinuities, Columns 1-3 of Table 4 select bands of 5
students (panels A and C for math and language, respectively) and 3 students (panels B and D)
around the first three breaks.37 The IV specifications in these columns regress schools’ average
test scores on class size, where the latter is instrumented by an indicator for whether schools’
enrollment is above the respective cutoff. As van der Klaauw (2002) indicates, these are equivalent
to Wald estimates of the effect of class size around each discontinuity.38 Column 4 (panels A and
B) produces similar estimates pooling all three local samples.39 In these pooled samples, the point
estimates of the effect of class size on test scores are uniformly negative, although they are not
statistically significant.40
35Although we omit the results, adding controls for individuals’ characteristics has essentially no effect on thekey coefficients.
36The conclusions from Table 3 are similar if the control function includes quadratic and not just linear termsfor enrollment. (For more detail on using splines of higher-order polynomials, see van der Klaauw (2002).)
37Separate results around the fourth cutoff are omitted for the sake of space; they account for less than 1 percentof all school observations. The erratic results in Column 2 are due to outliers close to the 90-student cutoff; whenwe replicate the results using 1999 data, the point estimates and standard errors around the second cutoff are inline with those around the other cutoffs.
38In other words, the point estimates could be replicated by dividing the difference in average test scores betweenthe schools above and below the cutoff within each band, by the difference in their respective average class sizes.
39In this case dummies for whether enrollments are above the three cutoffs, 1x > 45, 1x > 90, and 1x > 135,as well as three sample-specific intercepts serve as instruments; see van der Klaauw (2002).
40Note that clustering by enrollment level, as suggested by Lee and Card (2004), lowers significance levels.
23
One might be tempted to interpret these results as estimates of the causal effect of class size
on achievement. If the second testable implication of our model is correct, however, then the
smoothness conditions required for valid RD-based inference are likely to be violated.41 First,
note that in the case of voucher schools illustrated in Figure 5, there is a non-negligible mass of
schools offering one or two classrooms for which the class-size cap binds. In the figure, all schools
with productivity parameters between β1 and ν1 have enrollment 45, and all those between β2
and ν2 have enrollment 90. We describe this as stacking or “bunching up”. Panel A of Figure
11 presents a histogram of 4th grade enrollments among urban voucher schools, and the evidence
of such stacking is clear: more than 5 times as many schools report enrollments of 45 as report
enrollments of 46. The same happens at higher cutoffs as well: more than 7 times as many
schools have 90 4th graders as have 91, for instance.42 Panel B shows that there is no evidence
of stacking among private unsubsidized schools, which are not subject to the class-size cap; it
appears that the stacking among voucher schools is not due to technological factors unrelated to
the cap. Together, Panels A and B of Figure 11 provide a clear illustration of what McCrary
(2005) terms manipulation of the running variable—enrollment in this case.
Second, note that the model predicts that higher-income households on average sort into
higher-λ schools. If so, then the stacking will generate discontinuities in the relationship between
enrollment and student characteristics close to the cutoff points, violating the smoothness as-
sumptions underlying the RD approach. Again, Figure 5 illustrates the intuition: because of the
stacking, the average value of λ among schools at the cap is strictly less than the average value
just above the cap; since average household income is weakly monotonically increasing in λ (see
Case 2.2 above), the stacking generates discontinuous changes in household income at the class-
size cutoffs. It is worth emphasizing that stacking alone may not violate the RD assumptions in
our context;43 the violation of the RD assumptions arises from the interaction of the stacking and
the endogenous sorting of households.
Panel A of Figure 12 plots the fitted values from locally weighted regressions of log average
household income (calculated within enrollment cells) on enrollment. The size of each circle is41For this reason, we do not discuss in detail the magnitudes of the effects in tables 3 and 4.42Similar stacking occurs if 1st or 8th grade data are used.43If student performance depended only on class size and not directly on λ, and there were no sorting of students,
then students on one side of the class-size cutoff would still serve as a valid control group for students on the otherside.
24
proportional to the number of student observations in each enrollment cell. As expected, the
circles at 45, 90, and 135 are relatively large—a reflection of stacking at these points. There is
clear evidence that student income changes discontinuously around the first cutoff. Schools with
enrollments of 46 students have student incomes about 20 percent higher than schools with 45
students. Panel C shows, not surprisingly, that the former also have higher average mothers’
schooling—more than half a year. While jumps at the subsequent cutoff points are less evident,
the clear discontinuities at the first one are sufficient to cast doubt on the RD approach in this
context, especially since much of the density in the distribution of voucher schools is concentrated
around the first cutoff. (Refer to Figure 11). For further detail, panels B and D present the
corresponding (for income and mothers’ schooling, respectively) “raw” enrollment-cell means,
along with the fitted values of a locally weighted regression calculated within each enrollment
segment.
Columns 1-3 of Table 5 present regressions of household characteristics on the piecewise linear
spline in enrollment. The results are consistent with the visual evidence from Figure 12. In
particular, they confirm that income, mothers’ schooling, and fathers’ schooling display substantial
and statistically significant jumps at the first enrollment cutoff; the coefficients for subsequent
cutoffs are generally positive but not significant. Columns 4-5 show that the IV results from
Columns 4-5 of Table 3 are sensitive to the inclusion of socioeconomic controls. The coefficient
on class size for the math-score specification drops in magnitude from -0.7 and significant (Table
3, Column 4) to -0.1 and insignificant (Table 5, Column 4) with the inclusion of the controls.
For the language-score specification, the drop is from -0.6 to -0.1. The coefficients on mothers’
schooling and income are strongly significant in the test-score regressions; fathers’ schooling is
significant at the 10 percent level in the math-score specification.44 This is strong evidence that
the exclusion restriction required for the IV estimates in Table 3 is invalid: the cutoff dummies
used as instruments are correlated with household characteristics that are omitted from the Table
3 specification, and those characteristics are in turn correlated with the test-score outcomes. For
completeness, Table 6 replicates the within-band estimates from Table 4, but including controls,
with similar conclusions.
In short, these results provide a concrete illustration of Lee’s (2005) observation that “economic44These results are qualitatively similar if we use the predicted class size (31) as an instrument for class size in
place of the piecewise linear spline.
25
behavior can corrupt the RD design.” It is worth emphasizing, however, that our results apply
to settings in which for-profit schools can set prices and directly influence their enrollments, and
in which households enjoy substantial freedom to sort between schools; we have no reason to
believe that they extend to public-school contexts typically studied. For instance, Angrist and
Lavy (1999) point out that in the Israeli public school context they analyze, pupils are required
to attend their neighborhood schools, and schools in turn must accept applicants.45 Further,
migration and immigration may render it difficult for schools to predict enrollments, and private
participation is limited to orthodox schools.46
6 Conclusion
The model developed in this paper offers an explanation for two distinct empirical patterns ob-
served in the Chilean data. First, there is an inverted-U cross-sectional relationship between class
size and household income, which is likely to bias non-experimental estimates of the effect of class
size. Second, schools’ enrollments tend to stack at multiples of the class-size cap, which, in con-
junction with the sorting of households into schools of different quality, generates discontinuities
in student characteristics at these points. These in turn violate the assumptions required for
regression-discontinuity analyses of class size in the private-school context we analyze. The fact
that a relatively parsimonious model can can account for these distinct phenomena suggests that
it is a useful way to organize our thinking about class size and sorting in liberalized education
markets. Our findings recommend caution in interpreting cross-sectional and RD estimates of the
effect of class size in such settings, and underline the value of randomized experiments to estimate
class-size effects in contexts where schools are free to set prices and/or turn away students, and
households are free to sort between schools.47
This paper has also sought to show that a regulatory constraint on quality (the class size
cap), as well as lumpiness in the provision of the service being regulated (the integer constraint),45Similarly, in some exercises Urquiola (2006) considers Bolivian schools in rural towns in which school choice is
likely to be very limited.46The observation that Israeli institutions prevent strategic behavior of the kind we emphasize in this paper is
consistent with the finding of Angrist and Lavy (1999) that controlling for secular enrollment effects, adding controlsfor the proportion of students with low socioeconomic backgrounds does not affect their key estimates.
47For a broader argument in favor of randomization in estimating the effects of school inputs in developingcountries, see Duflo and Kremer (2004). Banerjee, Cole, Duflo, and Linden (2004) present randomized evaluationsof two programs to increase teacher attention per student in India.
26
can have important and perhaps unexpected consequences for the matching process between
heterogeneous consumers and heterogeneous producers.48 Such consequences should be taken
into account in designing regulations and policy interventions in education markets, as well as
in attempting to use those institutional features as sources of exogenous variation in empirical
investigations.
48In this sense, the paper seeks to contribute to the broader literature on price and quality regulation; seeSappington (2005) and Armstrong and Sappington (2006) for reviews.
27
A Theory Appendix
A.1 Case 1: Private Unsubsidized Schools
A.1.1 Case 1.1: Divisible Classrooms
Form the Lagrangian from (11), where the only constraint in effect is (12):
L = (p − c + τ)x − nFc − Fs − φ (x − d) (32)
The first-order conditions for an optimum are:
∂L∂p
= x + φ
(− d
µ
)= 0 (33a)
∂L∂n
= −Fc + φ
∫ θ
θ
∂s(λ|θ)∂n
Mg(θ) dθ (33b)
= −Fc + φ
(λΘd
µn
)= 0
∂L∂x
= p − c + τ − φ
(1 −
∫ θ
θ
∂s(λ|θ)∂x
g(θ) dθ
)(33c)
= p − c + τ − φ
(1 +
λΘs
µx
)= 0
∂L∂φ
≥ 0, φ ≥ 0, and φ∂L∂φ
= 0 (33d)
The interchanging of the partial derivatives and the integrals is justified by a standard propertyof integrals (see e.g. Bartle (1976, Theorem 31.7, p. 245)) and the continuity of s(λ|θ) and itspartial derivatives.
If φ = 0 and ∂L∂φ > 0, then (33b) implies Fc = 0, which is false. If there is a solution it must
be the case that ∂L∂φ = 0. If so, then x = s and (33a) implies φ = µ. The solution given by
(15a)-(15c) follows.To check the second-order conditions, form the bordered Hessian:
H ≡
⎛⎜⎜⎜⎜⎝0 ∂h
∂p∂h∂n
∂h∂x
∂h∂p
∂2L∂p2
∂2L∂n∂p
∂2L∂x∂p
∂h∂n
∂2L∂p∂n
∂2L∂n2
∂2L∂x∂n
∂h∂x
∂2L∂p∂x
∂2L∂n∂x
∂2L∂x2
⎞⎟⎟⎟⎟⎠where h(p, n, x;λ) ≡ x − s ≤ 0 is the (binding) inequality constraint. It is then straightforward(if tedious) to show that the last two leading principal minors alternate in sign with the last onenegative (and hence the Hessian of L is negative definite on the constraint set) if and only if (16)holds. Rewriting (16),∫ θ
θθ
[s(λ| θ)g(θ)
s(λ)
]dθ >
∫ θ
θ
(λθ
µ
)θ
[s(λ| θ)g(θ)
s(λ)
]dθ − λΘ2
µ
28
Under assumption (7), λθµ < 1 for all values of λ and θ. Hence the left-hand-side term is greater
than the first term on the right-hand side. Since the second term on the right-hand side isnegative, it follows that the solution to the first-order conditions given is a local constrainedmaximum (Simon and Blume, 1994, theorem 19.8, p. 466). Moreover, the negative-definitenessof L on the constraint set holds for all p, n and all x > 0, hence the local maximum is a uniqueglobal maximum of the constrained optimization problem.
Rewrite (15a)-(15c), together with (8), noting that φ = µ and x = d:
G1 = p − (µ + c − τ + λΘ) = 0 (34a)
G2 = x −∫ θ
θs(λ|θ)Mg(θ) dθ = 0 (34b)
G3 ≡ Θ −∫ θθ θs(λ|θ)g(θ) dθ∫ θθ s(λ|θ)g(θ) dθ
= 0 (34c)
G4 = −Fc +λΘx
n= 0 (34d)
where s(λ|θ) is given by (2). It is convenient to define z = xn (class size) and analyze (34a)-(34d) as
a set of four equations with four endogenous variables, p, x,Θ, and z, and one exogenous variable,λ. Let J be the Jacobian:
J ≡
⎛⎜⎜⎜⎝∂G1∂p
∂G1∂x
∂G1∂z
∂G1∂Θ
∂G2∂p
∂G2∂x
∂G2∂z
∂G2∂Θ
∂G3∂p
∂G3∂x
∂G3∂z
∂G3∂Θ
∂G4∂p
∂G4∂x
∂G4∂z
∂G4∂Θ
⎞⎟⎟⎟⎠By the implicit function theorem (e.g. Simon and Blume (1994, theorem 15.7, p. 355)):⎛⎜⎜⎝
∂p∂λ∂x∂λ∂z∂λ∂Θ∂λ
⎞⎟⎟⎠ = −J−1
⎛⎜⎜⎝∂G1∂λ
∂G2∂λ
∂G3∂λ
∂G4∂λ
⎞⎟⎟⎠ (35)
It is straightforward to show that:
det J = −ΨΘ
< 0 (36)
since Ψ > 0 (refer to (16)). Simplifying (35), we have:
⎛⎜⎜⎝∂p∂λ∂x∂λ∂z∂λ∂Θ∂λ
⎞⎟⎟⎠ =
⎛⎜⎜⎜⎜⎜⎝ΘΨ
[Θ + λ
µ ln(
Tz
)σ2
θ|λ]
xΘµ ln
(Tz
)− z
λΨ
[λµ ln
(Tz
)σ2
θ|λ + Θ]
Θσ2θ|λ
µΨ
[ln(
Tz
)+ 1]
⎞⎟⎟⎟⎟⎟⎠ (37)
at the optimum.
29
Note that
σ2θ|λ =
∫ θ
θ(θ − θ)2
[s(λ| θ)g(θ)
s(λ)
]dθ
and that because the double-exponential distribution yields a non-zero probability that any givenhousehold will choose any given school, the term in brackets is non-zero for all θ. Hence as longas θ = Θ for some θ, which we assumed when we assumed θ has positive support over (0, θ), wehave:
σ2θ|λ > 0 (38)
The results (17a), (17b), (17d) and (17e) follow from (16), (37) and (38). Finally, we have:
∂n
∂λ=
∂
∂λ
(x
z
)=
1z
∂x
∂λ− x
z2
∂z
∂λ> 0
where the inequality follows from (17b) and (17e). This gives (17c).
A.1.2 Case 1.2: Indivisible Classrooms
The Lagrangian for this case is the same as (32), but where n is now interpreted as a parameter.The first-order conditions are given by (33a), (33c), and (33d) above.
If φ = 0, then we have x = 0 and the second-order conditions for a maximum are not satisfied.If there is a solution it must be the case that ∂L
∂φ = 0. If so, then (18a)-(18b) follow. As in Case1.1, φ = µ.
The second-order conditions can be verified by evaluating the determinant of the borderedHessian (3x3 in this case). The determinant is positive, and the second-order conditions aresatisfied, if condition (16) is satisfied. This condition is guaranteed by (7). We again have thatthe Hessian of the profit function is negative definite on the constraint set, and hence that thesolution given by (18a)-(18b) is a global maximum.
Rewrite (18a)-(18b), together with (8):
G1 = p(n, λ) − [µ + c − τ + λΘ(n, λ)] = 0 (39a)
G2 ≡ x −∫ θ
θs(λ|θ)Mg(θ) dθ = 0 (39b)
G3 ≡ Θ −∫ θθ θs(λ|θ)g(θ) dθ∫ θθ s(λ|θ)g(θ) dθ
= 0 (39c)
Note that these are the same as (34a)-(34c). The number of classrooms is now treated as aparameter, and we no longer have (34d). Inverting the Jacobian (3x3 in this case) and using theimplicit function theorem (as in (35)) applied to (39a)-(39c), we have:
⎛⎝ ∂p∂λ∂x∂λ∂Θ∂λ
⎞⎠ =1
1 + λΨµ
⎛⎜⎜⎝Θ + λΘ2
µ + λµ ln
(nTx
)σ2
θ|λxµ
[Ψ ln
(nTx
)− Θ]
σ2θ|λµ
[λΘµ + ln
(nTx
)]⎞⎟⎟⎠ (40)
The results (19a),(19b) and (21) follow from (16), (20), (38), and (40).
30
Proof of Lemma 1
i. By the envelope theorem, we have:∂π∗
∂n=
∂L∂n
where L is given by (32) (where n is now interpreted as a parameter) and ∂π∗∂n allows p and
x to vary (holding λ constant) but ∂L∂n holds p, x and λ constant. Then by (33b):
∂2π∗
∂n2=
∂
∂n
(∂L∂n
)=
∂
∂n
(−Fc +
λΘx
n
)= −λΘx
n2+
λΘn
∂x
∂n+
λx
n
∂Θ∂n
(41)
Applying the implicit function theorem (as in (35)) to (39a)-(39c),
⎛⎝ ∂p∂n∂x∂n∂Θ∂n
⎞⎠ =λ
µ + λΨ
⎛⎜⎜⎝λσ2
θ|λn
xΨn
σ2θ|λn
⎞⎟⎟⎠ (42)
Plugging into (41),∂2π∗
∂n2= − λxΨ
n2(1 + λΨ
µ
) < 0
Hence π∗(n, λ) is globally concave in n for all λ.
ii. Since n∗(λ) is monotonically increasing in λ in Case 1.1 (refer to (15c) and (17c)), λ ∈(γk, γk+1) implies n∗(λ) ∈ (k, k + 1). From the global concavity of π∗(n, λ), it follows thatπ∗(n, λ) increases to the left of n∗ and decreases to the right of n∗ for a given λ. Hence for agiven λ within the interval (γk, γk+1) either k or k + 1 must be the optimal integer numberof classrooms.
iii. For all λ ∈ (γk, γk+1), define
Π(λ) ≡ π∗(k + 1, λ) − π∗(k, λ)
Since k is the unique optimal choice of number of classrooms at γk in the divisible-classroomscase, we know:
Π(γk) = π∗(k + 1, γk) − π∗(k, γk) < 0
Similarly,Π(γk+1) = π∗(k + 1, γk+1) − π∗(k, γk+1) > 0
Note that:∂2π∗
∂n∂λ=
∂
∂λ
(∂π∗
∂n
)=
∂
∂λ
(∂L∂n
)=
∂
∂λ
(−Fc +
λxΘn
)> 0
where the second equation follows from the envelope theorem (as above), the third equation
31
follows from (33b), and the inequality follows from (19b) and (21). Hence:
dΠdλ
=∂π∗(k + 1, λ)
∂λ− ∂π∗(k, λ)
∂λ> 0
for λ ∈ (γk, γk+1). Since Π(λ) is differentiable, monotonically increasing, negative at γk
and positive at γk+1, we know that there is exactly one value of λ, call it ρk, at whichΠ(ρk, k) = 0. In the interval [γk, ρk), k is the optimal integer number of classrooms; in theinterval [ρk, γk+1), k + 1 is the optimal choice.
iv. It remains to consider the regions at the extremes of the support of λ. Without loss ofgenerality, let j be the largest integer such that γj ≤ λu,49 and let j be the smallest integersuch that λu ≤ γj . Within each interval, [γj , γj+1), [γj+1, γj+2), ..., [γj−1, γj), the resultfrom part iii above holds. Truncate the interval (γj , γj) at λu below and λu above. Ifρj ≤ λu, then let k = j + 1; else if λu < ρj then let k = j. If ρj−1 < λu, then let k = j; elseif λu ≤ ρj−1, then let k = j − 1. Let ρk−1 = λu and ρk = λu. Then
λu = ρk−1 < ρk < ... < ρk = λu
form a partition of the set of unsubsidized schools, with the optimal integer number ofclassrooms equal to k, k + 1, ..., k between consecutive values, and the lemma is proved.
Discontinuities at Critical Values
Consider a given ρk from Lemma 1, where k < k < k. Note that limλ→ρ−kp∗, limλ→ρ−k
x∗ andlimλ→ρ−k
Θ (the limits as λ approaches ρk from the left) are given by (18a), (18b), and (8) (com-bined with (18a) and (18b)) with n = k. limλ→ρ+
kp∗, limλ→ρ+
kx∗ and limλ→ρ+
kΘ are given by
the same expressions with n = k + 1. The differences in the left and right limits then have thesame signs as the partial derivatives of the variables with respect to n. By equation (42), we haveimmediately that ∂p
∂n > 0, ∂x∂n > 0, and ∂Θ
∂n > 0. Hence:
limλ→ρ−k
p∗ < limλ→ρ+
k
p∗ (43a)
limλ→ρ−k
x∗ < limλ→ρ+
k
x∗ (43b)
limλ→ρ−k
Θ < limλ→ρ+
k
Θ (43c)
Moreover,
∂
∂n
(x
n
)=
1n
∂x
∂n− x
n2
=x
n2
(λΨ
µ + λΨ− 1)
< 0
49If λv < γ1 then let j = 0 and γ0 = 0.
32
and hence:
limλ→ρ−k
x∗
n> lim
λ→ρ+k
x∗
n(44)
A.2 Case 2: Voucher Schools, Post-1994
A.2.1 Case 2.1: Divisible Classrooms
The Lagrangian in this case is:
L = (p − c + τ) x − nFc − Fs − φ1 (x − d) − φ2
(x
n− 45
)(45)
The first-order conditions are:
∂L∂p
= x + φ1
(− d
µ
)= 0 (46a)
∂L∂n
= −Fc + φ1
(λΘd
µn
)+ φ2
( x
n2
)= 0 (46b)
∂L∂x
= p − c + τ − φ1
(1 +
λΘd
µx
)− φ2
(1n
)= 0 (46c)
∂L∂φ1
≥ 0, φ1 ≥ 0, and φ1∂L∂φ1
= 0 (46d)
∂L∂φ2
≥ 0, φ2 ≥ 0, and φ2∂L∂φ2
= 0 (46e)
Suppose φ1 = 0 and ∂L∂φ1
> 0, i.e. the demand constraint is not binding. Then (46a) impliesx = 0, and (46b) in turn implies Fc = 0, which is false. Hence if there is a solution it must bethat ∂L
∂φ1= 0 and the demand constraint is binding: x = s. Hence φ1 = µ by (46a).
We then have two sub-cases:
1. Class size cap binding: φ2 ≥ 0 and ∂L∂φ2
= 0 ⇒ xn = 45. Then by (46b), φ2
n = F45 − λΘ and
φ2 ≥ 0 ⇒ λΘ ≤ F45 . Algebra yields (24a)-(24c). To verify the second-order conditions, the
bordered Hessian is:
H ≡
⎛⎜⎜⎜⎜⎜⎜⎝0 0 ∂h1
∂p∂h1∂n
∂h1∂x
0 0 ∂h2∂p
∂h2∂n
∂h2∂x
∂h1∂p
∂h2∂p
∂2L∂p2
∂2L∂n∂p
∂2L∂x∂p
∂h1∂n
∂h2∂n
∂2L∂p∂n
∂2L∂n2
∂2L∂x∂n
∂h1∂x
∂h2∂x
∂2L∂p∂x
∂2L∂n∂x
∂2L∂x2
⎞⎟⎟⎟⎟⎟⎟⎠ (47)
where h1(p, n, x;λ) = x − d and h2(p, n, x;λ) = xn − 45 and L is given in (45). It is easily
verified that detH = − x3
µn4 < 0 at the optimum, and hence that the second-order conditionsfor a maximum are satisfied.
33
To analyze the slopes with respect to λ in this sub-case, rewrite (24a)-(24c) with (8) as:
G1 = p −(
c − τ + µ +Fc
45
)= 0 (48a)
G2 = x −∫ θ
θs(λ|θ)Mg(θ) dθ = 0 (48b)
G3 ≡ Θ −∫ θθ θs(λ|θ)g(θ) dθ∫ θθ s(λ|θ)g(θ) dθ
= 0 (48c)
G4 = n − x
45= 0 (48d)
where s(λ|θ) is given by (2).
Applying the implicit function theorem (as in (35)) to (48a)-(48d), we have:⎛⎜⎜⎝∂p∂λ∂x∂λ∂n∂λ∂Θ∂λ
⎞⎟⎟⎠ =1µ
ln(
T
45
)⎛⎜⎜⎝0
xΘxΘ45
σ2θ|λ
⎞⎟⎟⎠ (49)
which in turn implies (25a)-(25e).
2. Class size cap non-binding: φ2 = 0 and ∂L∂φ2
≥ 0. By (46b), xn = Fc
λΘ and ∂L∂φ2
≥ 0 impliesλΘ ≥ Fc
45 . When this condition is satisfied, the expressions for p, x, n, and Θ, the second-order conditions and the slopes with respect to λ are the same as in Case 1.1.
The fact that ∂Θ∂λ > 0 in both sub-cases guarantees that there is at most one critical value of
λ, call it α, at which αΘ(α) = Fc45 .
A.2.2 Case 2.2: Indivisible Classrooms
The Lagrangian in this case is:
L = (p − c + τ) x − nFc − Fs − φ1 (x − d) − φ2
(x
n− 45
)(50)
The first-order conditions are:
∂L∂p
= x − φ1
(d
µ
)= 0 (51a)
∂L∂x
= p − c + τ − φ1
(1 +
λΘd
µx
)− φ2
(1n
)= 0 (51b)
∂L∂φ1
≥ 0, φ1 ≥ 0, and φ1∂L∂φ1
= 0 (51c)
∂L∂φ2
≥ 0, φ2 ≥ 0, and φ2∂L∂φ2
= 0 (51d)
There are four sub-cases to be considered:
34
1. Demand constraint not binding, class-size cap not binding: φ1 = 0, ∂L∂φ1
≥ 0, φ2 = 0 and∂L∂φ2
≥ 0. By (51a), x = 0 and by (51b), p = c − τ . It is straightforward to verify that thesecond-order conditions are not satisfied in this sub-case.
2. Demand constraint not binding, class-size cap binding: φ1 = 0, ∂L∂φ1
≥ 0, φ2 ≥ 0 and ∂L∂φ2
= 0.By (51a), we have x = 0, but then the class-size constraint (x
n = 45) is violated, hence thereis no solution in this case.
3. Demand constraint binding, class-size cap non-binding: φ1 ≥ 0, ∂L∂φ1
= 0, φ2 = 0, ∂L∂φ2
≥ 0.The solution in this case is the same as in Case 1.2, given by (18a)-(18b), with slopes vs.λ given by (40), and the second-order conditions satisfied as discussed in Appendix A.1.2above. The condition ∂L
∂φ2≥ 0 requires:
45n ≤∫ θ
θ
1Ω(θ)
(T
45
) θλµ
exp(−c − τ + µ + λΘ
µ
)Mg(θ) dθ
Taking the exponential term out of the integral and solving for λΘ, we have:
λΘ ≤ µ lnΣ − µ ln(45n) − c + τ − µ
Setting this inequality to an equality yields (30), which implicitly defines βn, the value of λat which the class-size cap begins to bind.
4. Demand constraint binding, class-size cap binding: φ1 ≥ 0, ∂L∂φ1
= 0, φ2 ≥ 0 and ∂L∂φ2
= 0.The two constraints, x = d and x = 45n, pin down the values of p and x, and the results(27a)-(29b) follow immediately. As in the previous sub-case, φ1 = µ > 0.
The fact that ∂x∂λ = ∂
∂λ
(xn
)= 0 follows immediately. It is straightforward to show that
∂p
∂λ= Θ ln
(T
45
)> 0 (52)
∂Θ∂λ
=1µ
σ2θ|λ ln
(T
45
)> 0
It remains to establish the set of schools over which the condition φ2 ≥ 0 is satisfied. Thefirst order conditions imply:
φ2 = n µ ln Σ − µ ln(45n) − c + τ − µ − λΘ (53)
By the definition of βn above, if λ = βn then φ2 = 0. Partially differentiating (53):
∂φ2
∂λ= n
µ
Σ∂Σ∂λ
− λ∂Θ∂λ
− Θ
= n
Ψ ln
(T
45
)− Θ
> 0
by assumption (20). Thus φ2 ≥ 0 for λ ≥ βn.
35
Finally, we note that at the critical value βn, it follows from (40), (52), and (20) that:
limλ→β−
n
∂p
∂λ< lim
λ→β+n
∂p
∂λ
That is, the slope of p with respect to λ is steeper to the right of the critical value, in theregion where the class-size cap binds.
Proof of Lemma 2
Our strategy is similar to that of the proof of Lemma 1 in Appendix A.1.2 above, with additionalsteps to deal with the presence of the class-size cap.
i. Treating βn as a function of n and implicitly differentiating (30) with respect to n, we have:
∂βn
∂n=
µ
n(Ψ ln
(T45
)− Θ) > 0
for all n, where the inequality follows from (20). Hence βn is monotonically increasing in nand invertible. For a given λ, the class-size cap binds for n < β−1
n (λ) and does not bind forn ≥ β−1
n (λ).
ii. For all λ, define:π∗∗(n, λ) = π(p∗, x∗, n, λ)
where x∗ and p∗ are given by (27a) and (27b); this is optimal profit when the inequalityconstraint on class size is replaced by an equality constraint. Recall that π∗(n, λ) (definedin (22)) is optimal profit when there is no class-size cap. For each λ, there is a single valueof n, namely β−1
n (λ), at which the two profit expressions are equal:
π∗(β−1n (λ), λ) = π∗∗(β−1
n (λ), λ)
While π∗(n, λ) is a solution to the optimizing problem holding n constant, π∗∗(n, λ) is asolution to the same problem holding n constant and holding x constant (at 45n). Hencethe curves are tangent at the point at which they coincide, β−1
n (λ);50 for a proof of thisstandard result, see Dixit (1976, Ch. 3). The concavity of π∗(n, λ) was established in theproof of Lemma 1. Combining (10), (27b) and (27a), and differentiating twice with respectto n, we have that ∂2π∗∗
∂n2 = −45µn < 0 and hence that π∗∗(n, λ) is concave as well. Now
define:
π(n, λ) =
π∗(n, λ) if n ≥ β−1n (λ)
π∗∗(n, λ) if n < β−1n (λ)
(54)
This function represents optimal profit, taking into account whether or not the class-sizecap is binding. For n < β−1
n (λ), ∂π∂n is decreasing in n by the concavity of π∗∗(n, λ). For
n ≥ β−1n (λ), ∂π
∂n is decreasing in n by the concavity of π∗(n, λ). At n = β−1n (λ) the two
curves are tangent and ∂π∗∂n = ∂π∗∗
∂n . It follows that ∂π∂n is decreasing in n for all n and all λ.
Hence π(n, λ) is globally concave in n for all λ.50This argument relies on the fact that both functions are continuously differentiable.
36
iii. Since n∗ is monotonically increasing in λ in Case 2.1, λ ∈ (δk, δk+1) implies n∗(λ) ∈ (k, k+1).From the concavity of π(n, λ) it follows that π(n, λ) increases to the left of n∗ and decreasesto the right of n∗. Hence within the interval (δk, δk+1) either k or k +1 must be the optimalinteger number of classrooms.
iv. For λ ∈ (δk, δk+1), define:Π(λ) ≡ π(k + 1, λ) − π(k, λ)
Since k is the unique optimal choice of number of classrooms at δk in the divisible-classroomscase (Case 2.1),
Π(δk) = π(k + 1, δk) − π(k, δk) < 0
Similarly,Π(δk+1) = π(k + 1, δk+1) − π(k, δk+1) > 0
From part i above, we have βk < βk+1. Using (54), the definition of Π(λ) can be restated:
Π(λ) =
⎧⎨⎩π∗(k + 1, λ) − π∗(k, λ) if λ ≤ βk
π∗(k + 1, λ) − π∗∗(k, λ) if βk < λ ≤ βk+1
π∗∗(k + 1, λ) − π∗∗(k, λ) if βk+1 < λ
Consider each interval in turn:
a. λ ≤ βk. The class-size cap binds neither for n = k nor for n = k + 1. From the proofof Lemma 1, ∂2π∗
∂n∂λ > 0, hence ∂π∗(k+1,λ)∂λ > ∂π∗(k,λ)
∂λ , hence dΠdλ > 0.
b. βk < λ ≤ βk+1. The class-size cap binds for n = k but not for n = k + 1. Note that
∂π∗
∂λ=
∂L∂λ
= xΘ ln(
nT
x
)(55)
where L is given by (50), and the first equality follows by the envelope theorem. Sim-ilarly,
∂π∗∗
∂λ=
∂L∂λ
= 45nΘ ln(
T
45
)(56)
At n = k, the optimal enrollment if there were no class-size cap would be greater thanor equal to 45n; otherwise the cap would not be binding. Hence, comparing (55) and(56),
∂π∗(k, λ)∂λ
≥ ∂π∗∗(k, λ)∂λ
Using part iv.a,∂π∗(k + 1, λ)
∂λ>
∂π∗(k, λ)∂λ
≥ ∂π∗∗(k, λ)∂λ
Hence dΠdλ > 0
c. βk+1 < λ. The class-size cap binds for both n = k and n = k + 1. Partially differenti-ating (56) and using (25d),
∂
∂n
(∂π∗∗
∂λ
)= 45 ln
(T
45
)Θ + n
∂Θ∂n
> 0
37
Hence ∂π∗∗(k+1,λ)∂λ > ∂π∗∗(k,λ)
∂λ and dΠdλ > 0.
Thus Π(λ) is differentiable and monotonically increasing in λ for all λ. Together with thefact that it is negative at δk and positive at δk+1, this implies that there is exactly one, callit νk, at which Π(νk) = 0. For λ ∈ [δk, νk), k is the optimal integer number of classrooms;for λ ∈ (νk, δk+1), k + 1 is optimal.
v. It remains to consider the regions at the extremes of the support of λ. Without loss ofgenerality, let j be the largest integer such that δj ≤ λv,
51 and let j be the smallest integersuch that λv ≤ δj . Within each interval, [δj , δj+1), [δj+1, δj+2), ..., [δj−1, δj), the result frompart v holds. Truncate the interval (δj , δj) at λv below and λv above. If νj ≤ λv, then letk = j + 1; else if λv < νj then let k = j. If νj−1 < λv, then let k = j; else if λv ≤ νj−1, thenlet k = j − 1. Let νk−1 = λv and νk = λv. Then
νk−1 < νk < ... < νk
form a partition of the set of voucher schools, with the optimal integer number of classroomsequal to k, k + 1, ..., k between consecutive values, and the lemma is proved.
By the intermediate value theorem, there must be at least one λ ∈ (δk, δk+1) where Π(λ) = 0.
Discontinuities at Critical Values
Consider a given νk from Lemma 2, where k < k < k. There are two cases to consider:
1. If βk ≥ νk and the class-size cap is not binding to the left of νk, then (43a)-(44) fromAppendix A.1.2 apply to the particular critical value νk.
2. If βk < νk and the class-size cap is binding to the left of νk, then consider x, xn , and Θ in
turn:
(a) Suppose there were no class-size cap. Then for λ ∈ (βk, νk), we would have ∂x∂λ > 0
and (43b) from Appendix A.1.2 would apply. In the presence of the class-size cap, forλ ∈ (βk ≥ νk) we have ∂x
∂λ = 0. Hence
limλ→ρ−k
x∗∣∣∣∣∣cap
< limλ→ρ−k
x∗∣∣∣∣∣no cap
If to the right of νk the class size cap is not binding, then by (43b),
limλ→ρ−k
x∗ < limλ→ρ+
k
x∗
Else if to the right of νk the class size cap is binding, then
limλ→ρ−k
x∗ = 45k < 45(k + 1) = limλ→ρ+
k
x∗
51If λv < δ1 then let j = 0 and δ0 = 0.
38
(b) Let z∗ = x∗n . If to the right of νk the class-size cap is not binding, then:
limλ→ρ−k
z∗ = 45 > limλ→ρ+
k
z∗ (57)
Else if to the right of νk the class-size cap is binding
limλ→ρ−k
z∗ = limλ→ρ+
k
z∗ = 45 (58)
(c) Average willingness to pay can be written:
Θ(z) =
∫ θθ θ 1
Ω(θ)
(Tz
) θλµ g(θ)dθ∫ θ
θ1
Ω(θ)
(Tz
) θλµ g(θ)dθ
(59)
where z = xn . Differentiating,
∂Θ∂z
= − λ
µzσ2
θ|λ > 0 (60)
If to the right of νk the class-size cap is not binding, then by (57) and (60):
limλ→ρ−k
Θ < limλ→ρ+
k
Θ
Else if to the right of νk the class-size cap is binding, then by (58) and (60):
limλ→ρ−k
Θ = limλ→ρ+
k
Θ
39
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43
Figure 1: Histograms of the number of 4th grades in urban schools, 2002
Note: Based on 2002 administrative data for schools with positive 4th grade enrollments. The figures cover only schools Chile’s Ministry of education classifies as urban. For voucher schools, panel C excludes about 0.2 percent of schools which report having more than eight 4th grade classes. Figure 2: Case 1.1—Private unsubsidized schools with divisible classrooms
x/n
λ
050
010
0015
00N
um
ber o
f sch
ools
1 2 3 4 5 6 7 8Num ber of 4 th grades
Panel A: All schools
020
040
060
080
0N
umbe
r of s
choo
ls
1 2 3 4 5 6 7 8Number of 4th grades
Panel B: Public schools
020
040
060
080
0N
um
ber o
f sch
ools
1 2 3 4 5 6 7 8Num ber of 4 th grades
Panel C: Voucher private schools
050
100
150
200
250
Num
ber o
f sch
ools
1 2 3 4 5 6 7 8Number of 4th grades
Panel D: Unsubsidized private schools
Figure 3: Case 1.2——Private unsubsidized schools with indivisible classrooms Figure 4: Case 2.1—Voucher schools with divisible classrooms
45
x/n
α λ
45
x/n
γ1 ρ1 γ2 ρ2 ρ3γ3 γ4 ρ4 γ5 ρ5 γ6λ
Figure 5: Case 2.2—Voucher schools with indivisible classrooms
45
x/n
β1 β2ν1 ν2 ν3 ν4 ν5λ
Figure 6: Densities of log income and mothers’ schooling by type of urban school, 2002
Notes: The figures plot kernel densities of log average household income and average mothers’ schooling. The data are from 2002 individual level SIMCE information aggregated to the school level. Both panels refer to urban schools only.
0.
10 11 12 13 14 15Log income
Panel A: Income
0.
0 5 10 15 20Mothers' schooling
Panel B: Mothers' schooling
Unsubsidized private
Unsubsidized private
Public Public
Voucher
Voucher
Figure 7: Class size and income/mothers’ schooling among urban private schools, 2002
Note: Income and mothers’ schooling come from 2002 individual-level SIMCE data aggregated to the school level. Class size is from 2002 administrative information. In each panel, the thicker lines plot fitted values of locally weighted regressions of class size on log income (panels A-C) and mothers’ schooling (panels D-F), using a bandwidth of 0.2. The thinner lines plot fitted values, along with the 5th and 95th percentile confidence interval, of a regression of class size on a 5th order polynomial of log income or mothers’ schooling. Within each set of schools, the figures omit observations below and above the 1st and 99th percentile of income or mothers’ schooling.
1520
2530
35C
lass
siz
e
11 12 13 14 15Log income
Panel A: Log income--All private schools
1520
2530
35C
lass
siz
e
11 12 13 14 15Log incom e
Panel B: Log incom e--Voucher scho ols
1520
2530
35C
lass
siz
e
11 12 13 14 15Log income
Panel C: Log income--Unsubsidized schools
1520
2530
35C
lass
siz
e
6 8 10 12 14 16M oth ers' sch ool ing
Panel D: Mothers' schooling--All private schools
1520
2530
35C
lass
siz
e
6 8 10 12 14 16Moth ers' sch ool ing
Pan el E: Mo thers' schooling --Vouch er schools
1520
2530
35C
lass
siz
e
6 8 10 12 14 16M oth ers' sch ool ing
Pan el F: Mo thers' schooling --Unsubsidized schools
Figure 8: Average tuition and log income among urban voucher schools, 2002
050
0010
000
1500
020
000
Tuitio
n
11 11.5 12 12.5 13 13.5Log income
Note: Tuition information comes from school-level administrative data for 2002, and is in monthly Chilean pesos. Income is from 2002 individual-level SIMCE test data, aggregated to the school level. The thicker line plots fitted values of locally weighted regressions of tuition on log income using a bandwidth of 0.2. The thinner lines plot fitted values, along with the 5th and 95th percentile confidence interval, of a regression of monthly tuition on a 5th order polynomial of log income. The figure omits observations below and above the 1st and 99th percentile of log income.
Figure 9: 4th grade enrollment and class size in urban private voucher schools, 2002 Note: Based on administrative data for 2002. The solid line describes the relationship between enrollment and class size that would exist if the class size rule (equation 30 in the text) were applied mechanically. The circles plot the enrollment cell means of 4th grade class size, and the dotted line plots fitted values from a locally weighted regression (using a bandwidth of 0.05) of class size on enrollment. Only data for schools with 4th grade enrollments below 180 are plotted; this excludes less than two percent of all schools. Figure 10: Math scores and enrollment in urban private voucher schools, 2002
Note: Test scores come from 2002 individual-level SIMCE information aggregated to the school level, and enrollment is from administrative information for the same year. The figures plot “raw” enrollment-cell means of test scores, along with the fitted values of a locally weighted regression calculated within each enrollment segment
010
2030
4050
4th
grad
e cl
ass
size
(x/n
)
0 45 90 1354th grade enrollment
200
220
240
260
280
300
Mat
h te
st s
core
45 90 1354th-grade enrollment
Pan el A: Ma th
200
220
240
260
280
300
Lang
uage
test
sco
re
45 90 1354th-grade enrollment
Pan el B: La nguage
Figure 11: Histograms of 4th grade enrollment in urban private schools, 2002
020
4060
80N
umbe
r of
sch
ools
0 45 90 135 180 2254th grade enrollment
Panel A: Voucher private
05
1015
20N
umbe
r of
sch
ools
0 45 90 135 180 2254th grade enrollment
Panel B: Unsubsidized private
Note: Based on administrative data for 2002. For visual clarity, only schools with 4th grade enrollments below 225 are displayed. This excludes less than one percent of all schools.
Figure 12: Student characteristics, test scores, and enrollment in urban private voucher schools, 2002
Note: Income and mothers’ schooling come from 2002 individual SIMCE information aggregated to the school level. Enrollment is from administrative data for the same year. Panels A and C present the fitted values of a locally-weighted regression of average log income and mothers’ schooling on enrollment, where the size of each circle is proportional to the number of student observations in each enrollment cell. Panels B and D present the corresponding “raw'” enrollment-cell means, along with the fitted values of a locally weighted regression calculated within each enrollment segment. Only data for schools with 4th grade enrollments below 180 are plotted; this excludes less than two percent of all schools.
1212
.112
.212
.312
.412
.5H
ous
eho
ld in
com
e
45 90 1354th-g rade en rollmen t
Panel A: Log income
11.5
1212
.513
Hou
seho
ld in
com
e
45 90 1354th-grade enrollment
Panel B: Log income
10.5
1112
Mo
ther
s' s
choo
ling
45 90 1354th-g rade en rollmen t
Panel C: Mothers' schooling
910
1112
1314
Mot
hers
' sch
oolin
g
45 90 1354th-grade enrollment
Panel D: Mothers' schooling
Table 1: Descriptive statistics for urban schools, 2002
Note: Data on income, parental schooling, and test scores are from 2002 individual SIMCE test information aggregated to the school level. Class size, the number of classes operated, and enrollment come from administrative data for the same year. The table covers only urban schools. Panel A describes all 3,776 schools in the sample, panel B covers 1,652 public schools, panel C refers to 1,636 voucher private schools, and panel D is based on 488 private unsubsidized institutions.
Sample/variable QuantileMean S.D. 10th 25th 50th 75th 90th
Panel A: Full sampleIncome 311.2 341.7 102.5 130 180 303.7 781.8Mothers’ schooling 11.1 2.4 8.3 9.3 10.7 12.7 14.9Fathers’ schooling 11.3 2.5 8.5 9.4 10.8 12.9 15.2Math score 249.3 30 212.6 227.7 246.9 269.3 291.9Language score 253.1 30.5 215.2 231.3 251.5 275.1 2964th grade class size 32.9 9.2 20 27 34 40.3 44.3No. of 4th grade clases 1.88 1.09 1 1 2 2 34th grade enrollment 65 45.1 21 33 56 86 122
Income 152.8 69.1 94.4 113.6 138.6 172.1 217Mothers’ schooling 9.6 1.3 8.1 8.6 9.4 10.4 11.3Fathers’ schooling 9.7 1.4 8.1 8.8 9.6 10.6 11.5Math score 235.1 21.4 208.7 220.6 233.8 248.8 262.2Language score 237.9 21.6 211.2 223.9 237.5 251.8 265.84th grade class size 34.7 7.2 25 30 35.5 40.3 44
No. of 4th grade clases 2.1 1 1 1 2 3 3
4th grade enrollment 75.4 42 29 41.5 70 98 130
Income 250.8 142.6 115.7 155.8 213.1 307.1 428.2Mothers’ schooling 11.5 1.8 8.9 10.2 11.6 12.8 13.8Fathers’ schooling 11.5 1.9 9 10.2 11.6 12.9 13.9Math score 252.2 27.5 215.1 234.4 254.3 271.3 287.5Language score 256.9 28.4 218.4 239.1 259.7 277.4 290.74th grade class size 34.2 9.3 21 28 36 42 45
No. of 4th grade clases 1.7 1.07 1 1 1 2 3
4th grade enrollment 61.4 48.1 21 31 45 82.5 112
Income 1050.2 419.3 506.3 770.9 1003.6 1350 1673.5Mothers’ schooling 15.1 1.2 13.8 14.7 15.4 15.9 16.3Fathers’ schooling 15.6 1.3 14 15 15.9 16.5 16.9Math score 288.1 25.3 254.3 276 292.9 304.7 314.1Language score 291.8 23.7 261.8 283 297.5 307 315.14th grade class size 22.4 8.6 10 16.8 23 28.5 34
No. of 4th grade clases 1.7 1 1 1 1 2 3
4th grade enrollment 41.7 33.2 10 17 31.5 57.5 85
Panel B: Public schools
Panel C: Voucher private schools
Panel D: Unsubsidized private schools
Table 2: Class size and income and mothers’ schooling among urban private schools, 2002
Note: Income and mothers’ schooling are from 2002 individual-level SIMCE data aggregated to the school level. Class size comes from administrative data for the same year. *** indicates statistical significance at the 1% level; ** at 5%, and * at 10%.
All private Voucher private Unsubsidized private(1) (2) (3) (4) (5) (6) (7) (8) (9)
Panel A-dep. var: 4th grade class sizeLog income 60.0*** 59.8*** 78.6*** 120.3*** 125.5*** 135.3*** -106.9*** -90.2*** -115.8***
(7.7) (7.8) (9.0) (15.2) (15.6) (16.7) (26.0) (26.2) (34.3)Log income2 -2.5*** -2.5*** -3.3*** -4.9*** -5.1*** -5.5*** 4.1*** 3.4*** 4.5***
(0.3) (0.3) (0.4) (0.6) (0.6) (0.7) (1.0) (1.0) (1.3)13 region dummies No Yes No No Yes No No Yes No318 commune dummies No No Yes No No Yes No No YesR2 0.161 0.188 0.276 0.038 0.073 0.209 0.052 0.112 0.265N 2,124 2,124 2,124 1,636 1,636 1,636 488 488 488Panel B-dep. var: 4th grade class sizeMothers' schooling 9.8*** 10.2*** 11.9*** 8.5*** 8.7*** 9.8*** -7.6** -6.3* -6.0
(0.8) (0.9) (1.0) (1.2) (1.3) (1.4) (3.4) (3.4) (4.2)Mothers' schooling2 -0.5*** -0.5*** -0.5*** -0.4*** -0.4*** -0.4*** 0.3** 0.2** 0.2
(0.0) (0.0) (0.0) (0.1) (0.1) (0.1) (0.1) (0.1) (0.1)13 region dummies No Yes No No Yes No No Yes No318 commune dummies No No Yes No No Yes No No YesR2 0.171 0.191 0.278 0.029 0.061 0.200 0.013 0.086 0.224N 2,124 2,124 2,124 1,636 1,636 1,636 488 488 488
Table 3: 1st stage, reduced form, and base IV specifications; urban private voucher schools, 2002 Note: Test scores are from 2002 SIMCE individual-level data, aggregated to the school level. Class size and enrollment come from administrative information for the same year. *** indicates statistical significance at the 1% level; ** at 5%, and * at 10%. All regressions are clustered by enrollment levels, as Lee and Card (2004) suggest is appropriate in RD settings in which the assignment variable is discrete. The table focuses only on effects around the first fours cutoffs, excluding the less than 1 percent of schools that report 4th grade enrollments in excess of 225 students.
1st stageClass Math Language Math Languagesize score score score score(1) (2) (3) (4) (5)
Class size -0.7*** -0.6**
(0.3) (0.3)1x ≥46 -16.5*** 11.8*** 9.9***
(2.7) (3.2) (3.3)1x ≥91 -4.9** 0.0 1.6
(2.3) (4.0) (4.0)1x ≥136 -4.3** 11.5 10.9
(2.0) (13.6) (12.9)1x ≥181 -3.4 11.2 11.5
(3.0) (10.6) (13.9)x 0.95*** 0.1 0.2* 0.8*** 0.8***
(0.01) (0.1) (0.1) (0.2) (0.3)(x -46)*1x ≥46 -0.6*** -0.1 -0.2 -0.6** -0.6**
(0.1) (0.2) (0.2) (0.3) (0.3)(x -91)*1x ≥91 -0.3** 0.0 -0.1 -0.2* -0.3**
(0.1) (0.1) (0.1) (0.1) (0.1)(x -136)*1x ≥136 0.0 -0.6 -0.4 -0.2 -0.1
(0.1) (0.4) (0.4) (0.2) (0.2)(x -181)*1x ≥181 -0.1 0.2 0.2 0.1 0.1
(0.1) (0.5) (0.6) (0.3) (0.4)N 1,623 1,623 1,623 1,623 1,623R2 0.844 0.069 0.072
Reduced form IV
Table 4: Within-enrollment band regressions; urban private voucher schools, 2002
Notes: Test scores are from 2002 SIMCE individual-level data, aggregated to the school level. Class size and enrollment come from administrative information for the same year. Columns present regressions within 5 (panels A and C) and 3 (panels B and D) student enrollment bands around the first three cutoffs. Separate results around the fourth cutoff are omitted for the sake of space; they account for less than 1 percent of all school observations. The IV specifications in these columns regress schools' average scores on class size, where the latter is instrumented by using an indicator for whether schools' enrollment is above the respective cutoff. As van der Klaauw (2002) indicates, these are equivalent to Wald estimates of the effect of class size around each discontinuity. Column 4 produces similar estimates pooling all three local samples. In this case, the three cutoffs (1x>45, 1x>90, and 1x>135) and three sample-specific intercepts serve as instruments; see van der Klaauw (2002). All regressions are clustered around enrollment levels, see Lee and Card (2004).
Cutoff Pooled 1st 2nd 3rd cutoffs
(45 students)
(90 students)
(135 students)
(1) (2) (3) (4)
Class size -3.3 -32.6 -4.4 -3.4(2.5) (185.3) (7.3) (2.4)
N 249 186 41 476
Class size -6.9 -55.2 -13.9** -7.4(6.7) (197.9) (4.4) (6.1)
N 185 145 33 363
Class size -3.1 -38.1 -4.0 -3.2(2.4) (216.0) (6.7) (2.3)
N 249 186 41 476
Class size -7.0 59.7 -13.0** -7.3(6.6) (213.3) (3.7) (5.9)
N 185 145 33 363
Panel A: 5 student intervalDep. var.: Math score
Panel B: 3 student interval
Dep. var.: Language score
Dep. var.: Math score
Panel C: 5 student intervalDep. var.: Language score
Panel D: 3 student interval
Table 5: Behavior of selected variables around enrollment cutoffs and IV specifications; urban private voucher schools, 2002
Mothers’ Fathers’ Householdschooling schooling income
(1) (2) (3) (4) (5)Class size -0.1 0.1
(0.1) (0.1)1x ≥46 0.93*** 0.94*** 66.6***
(0.2) (0.2) (14.1)1x ≥91 0.03 0.03 17.6
(0.2) (0.2) (17.3)1x ≥136 0.66 0.86 143.7*
(0.7) (0.8) (79.4)1x ≥181 0.66 0.71 53.1
(1.1) (1.1) (77.7)x -0.02* -0.02* -2.4*** 0.4*** 0.4***
(0.0) (0.0) (0.8) (0.1) (0.1)(x -46)*1x ≥46 0.02* 0.01 2.3*** -0.4*** -0.4***
(0.0) (0.0) (0.8) (0.1) (0.1)(x -91)*1x ≥91 -0.01 0 -0.7 0.1 0
(0.0) (0.0) (0.6) (0.1) (0.1)(x -136)*1x ≥136 -0.02 -0.03 -3.5 -0.2** -0.1
(0.0) (0.0) (2.3) (0.1) (0.1)(x -181)*1x ≥181 0.01 0.02 4 0.1 0.1
(0.0) (0.0) (3.4) (0.1) (0.2)Mothers’ schooling 8.5*** 9.5***
(0.9) (1.0)Fathers’ schooling 1.6* 1.1
(0.9) (0.9)Household income 13.4** 16.6***
(5.4) (5.5)N 1,623 1,623 1,623 1,623 1,623R2 0.034 0.032 0.029
IVMath Language
Notes: Test scores are from 2002 SIMCE individual-level data, aggregated to the school level. Class size and enrollment come from administrative information for the same year. *** indicates statistical significance at 1%; ** at 5%, and * at 10%. All regressions are clustered by enrollment levels. The table focuses only on effects around the first fours cutoffs, excluding the less than 1 percent of schools that report 4th grade enrollments in excess of 225 students.
Table 6: Within-enrollment band regressions; urban private voucher schools, 2002
Notes: Test scores are from 2002 SIMCE individual-level data, aggregated to the school level. Class size and enrollment come from administrative information for the same year. Columns present regressions within 5 (panels A and C) and 3 (panels B and D) student enrollment bands around the first three cutoffs. Separate results around the fourth cutoff are omitted; they account for less than 1 percent of observations. These specifications regress schools' average math scores on class size, where the latter is instrumented using an indicator for whether schools' enrollment is above the respective cutoff. As van der Klaauw (2002) indicates, these are equivalent to Wald estimates of the effect of class size around each discontinuity. Column 4 produces similar estimates pooling all three local samples. In this case, the three cutoffs (1x>45, 1x>90, and 1x>135) and three sample-specific intercepts serve as instruments; see van der Klaauw (2002). All regressions are clustered around enrollment levels to adjust for the fact that the assignment variable (enrollment) is discrete.
Cutoff Pooled1st 2nd 3rd cutoffs
(45 students) (90 students) (135 students)(1) (2) (3) (4)
Class size -1.1 -16.1 -11.7 -1.1(1.2) (83.1) (25.8) (1.0)
Mothers’ schooling 7.5** 13.2 11.5 8.7**
(2.5) (24.2) (12.1) (1.9)Fathers’ schooling 2.8** -4.9 19.2 1.4
(1.4) (25.3) (43.9) (1.6)Household income -2.9 7.7 -254.2 9.8
(32.5) (155.4) (506.2) (14.7)N 249 186 41 476
Class size -3.3 39.6 25.7 -2.8(3.8) (154.9) (26.3) (2.6)
Mothers’ schooling 8.8 -9.6 12 10.9***
(5.4) (85.9) (18.3) (3.6)Fathers’ schooling -0.3 10.1 -26.9** -1.6
(3.2) (58.9) (13.5) (2.7)Household income 8.6 76.6 469.2 11.5
(52.4) (120.3) (413.2) (25.5)N 185 145 33 363
Class size -0.8 -20.2 -9.8 -0.8(1.0) (103.7) (21.1) (0.8)
Mothers’ schooling 7.7** 15.7 8.6 9.1***
(2.1) (29.8) (10.7) (1.6)Fathers’ schooling 2.6** -5.7 18.5 1.6
(1.1) (31.2) (35.7) (1.2)Household income 9.1 62.4 -212 11.2
(25.0) (194.8) (413.3) (12.6)N 249 186 41 476
Class size -3 42.9 21.1 -2.4(3.0) (167.3) (21.2) (2.0)
Mothers’ schooling 9.4** -10.6 6.8 11.1***
(4.5) (91.7) (15.4) (2.9)Fathers’ schooling -0.3 12.9 -17.7* -0.7
(2.6) (62.8) (6.8) (2.0)Household income 13 61.2 386.6 9.1
(46.2) (131.5) (326.6) (21.1)N 185 145 33 363
Panel A: 5 student interval; Dep. var: Math score
Panel B: 3 student interval; Dep. var: Math score
Panel C: 5 student interval; Dep. var--Language score
Panel D: 3 student interval; Dep. var.--Language score